/* * Encog(tm) Core v3.4 - Java Version * http://www.heatonresearch.com/encog/ * https://github.com/encog/encog-java-core * Copyright 2008-2016 Heaton Research, Inc. * * Licensed under the Apache License, Version 2.0 (the "License"); * you may not use this file except in compliance with the License. * You may obtain a copy of the License at * * http://www.apache.org/licenses/LICENSE-2.0 * * Unless required by applicable law or agreed to in writing, software * distributed under the License is distributed on an "AS IS" BASIS, * WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied. * See the License for the specific language governing permissions and * limitations under the License. * * For more information on Heaton Research copyrights, licenses * and trademarks visit: * http://www.heatonresearch.com/copyright */ package org.encog.ml.fitting.linear; import org.encog.EncogError; import org.encog.ml.MLMethod; import org.encog.ml.TrainingImplementationType; import org.encog.ml.data.MLDataPair; import org.encog.ml.data.MLDataSet; import org.encog.ml.train.BasicTraining; import org.encog.neural.networks.training.propagation.TrainingContinuation; import org.encog.util.simple.EncogUtility; public class TrainLinearRegression extends BasicTraining { private final LinearRegression method; private final MLDataSet training; public TrainLinearRegression(LinearRegression theMethod, MLDataSet theTraining) { super(theMethod.getInputCount()==1?TrainingImplementationType.OnePass:TrainingImplementationType.Iterative); this.method = theMethod; this.training = theTraining; } /** * @return the training */ public MLDataSet getTraining() { return training; } @Override public void iteration() { int m = (int)this.training.getRecordCount(); double sumX = 0; double sumY = 0; double sumXY = 0; double sumX2 = 0; for(MLDataPair pair: this.training) { sumX+=pair.getInputArray()[0]; sumY+=pair.getIdealArray()[0]; sumX2+=Math.pow(pair.getInputArray()[0], 2); sumXY+=pair.getInputArray()[0]*pair.getIdealArray()[0]; } this.method.getWeights()[1] = ((m*sumXY)-(sumX*sumY))/((m*sumX2)-Math.pow(sumX, 2)); this.method.getWeights()[0] = ((1.0/m)*sumY)-( (this.method.getWeights()[1]/m) * sumX); this.setError(EncogUtility.calculateRegressionError(this.method, this.training)); } @Override public boolean canContinue() { return false; } @Override public TrainingContinuation pause() { return null; } @Override public void resume(TrainingContinuation state) { throw new EncogError("Not supported"); } @Override public MLMethod getMethod() { return this.method; } }